Amazon.com: Neural Network Models of Conditioning and Action: Quantitative Analyses of Behavior (Quantitative Analyses of Behavior Series) (9780805808421): Michael L. Commons, Stephen Grossberg, John E.R. Staddon: Books

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Neural Network Models of Conditioning and Action: Quantitative Analyses of Behavior (Quantitative Analyses of Behavior Series) [Paperback]

Michael L. Commons (Editor), Stephen Grossberg (Editor), John E.R. Staddon (Editor)


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Book Description

March 1, 1991 0805808426 978-0805808421 1
The result of a conference held at Harvard University, this volume presents some of the exciting interdisciplinary developments that are clarifying how animals and people learn to behave adaptively in a rapidly changing environment. The text focuses on aspects of how recognition learning, reinforcement learning, and motor learning interact to generate adaptive goal-oriented behaviors that can satisfy internal needs -- an important topic for understanding brain function as well as for designing new types of autonomous robots.

Because a dynamic analysis of system interactions is needed to understand these challenging phenomena -- and neural network models provide a natural framework for representing and analyzing such interactions -- all the articles either develop neural network models or provide biological constraints for guiding and testing their design. The result of a conference held at Harvard University, this volume presents some of the exciting interdisciplinary developments that clarify how animals and people learn to behave adaptively in a rapidly changing environment. The contributors focus on aspects of how recognition learning, reinforcement learning, and motor learning interact to generate adaptive goal-oriented behaviors that can satisfy internal needs -- an area of inquiry as important for understanding brain function as it is for designing new types of autonomous robots.

Because a dynamic analysis of system interactions is needed to understand these challenging phenomena -- and neural network models provide a natural framework for representing and analyzing such interactions -- all the articles either develop neural network models or provide biological constraints for guiding and testing their design.

Product Details

  • Paperback: 376 pages
  • Publisher: Psychology Press; 1 edition (March 1, 1991)
  • Language: English
  • ISBN-10: 0805808426
  • ISBN-13: 978-0805808421
  • Product Dimensions: 8.8 x 6 x 1 inches
  • Shipping Weight: 1.4 pounds
  • Amazon Best Sellers Rank: #4,306,471 in Books (See Top 100 in Books)

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